In this work, computationally efficient approximate methods are developed for analyzing uncertain dynamical systems. Uncertainties in both the excitation and the modeling are considered and examples are presented illustrating the accuracy of the proposed approximations. For nonlinear systems under uncertain excitation, methods are developed to approximate the stationary probability density function and statistical quantities of interest. The methods are based on approximating solutions to the Fokker-Planck equation for the system and differ from traditional methods in which approximate solutions to stochastic differential equations are found. The new methods require little computational effort and examples are presented for which the acc...
International audienceThe propagation of uncertain input parameters in a linear dynamic analysis is ...
An analytical approximation for the calculation of the stationary reliability of linear dynamic syst...
International audienceThis paper deals with data uncertainties and model uncertainties issues in com...
In this work, computationally efficient approximate methods are developed for analyzing uncertain dy...
An asymptotic approximation is developed for evaluating the probability integrals which arise in the...
An asymptotic approximation is developed for evaluating the probability integrals that arise in the ...
An asymptotic approximation is developed for evaluating the probability integrals that arise in the ...
International audienceIn this paper, a methodology for propagation of uncertainty in stochastic nonl...
An adaptative phase-space discretization strategy for the global analysis of stochastic nonlinear dy...
We consider an alternative approach to the use of nonlinear stochastic Markov processes (which have ...
New asymptotic approximations of reliability integrals are developed in both the spaces of original...
An asymptotic approximation is developed for calculating a class of probability integrals which aris...
A Gaussian-mixture-model approach is proposed for accurate uncertainty propagation through a general...
Abstract: Uncertainty propagation and quantification has gained consider-able research attention dur...
A spectral density approach for the identification of linear systems is extended to nonlinear dynamic...
International audienceThe propagation of uncertain input parameters in a linear dynamic analysis is ...
An analytical approximation for the calculation of the stationary reliability of linear dynamic syst...
International audienceThis paper deals with data uncertainties and model uncertainties issues in com...
In this work, computationally efficient approximate methods are developed for analyzing uncertain dy...
An asymptotic approximation is developed for evaluating the probability integrals which arise in the...
An asymptotic approximation is developed for evaluating the probability integrals that arise in the ...
An asymptotic approximation is developed for evaluating the probability integrals that arise in the ...
International audienceIn this paper, a methodology for propagation of uncertainty in stochastic nonl...
An adaptative phase-space discretization strategy for the global analysis of stochastic nonlinear dy...
We consider an alternative approach to the use of nonlinear stochastic Markov processes (which have ...
New asymptotic approximations of reliability integrals are developed in both the spaces of original...
An asymptotic approximation is developed for calculating a class of probability integrals which aris...
A Gaussian-mixture-model approach is proposed for accurate uncertainty propagation through a general...
Abstract: Uncertainty propagation and quantification has gained consider-able research attention dur...
A spectral density approach for the identification of linear systems is extended to nonlinear dynamic...
International audienceThe propagation of uncertain input parameters in a linear dynamic analysis is ...
An analytical approximation for the calculation of the stationary reliability of linear dynamic syst...
International audienceThis paper deals with data uncertainties and model uncertainties issues in com...